Prioritized Experience Replay

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Authors David Silver, John Quan, Ioannis Antonoglou, Tom Schaul
Journal/Conference Name Proceedings - International Conference on Tools with Artificial Intelligence, ICTAI
Paper Category
Paper Abstract Experience replay lets online reinforcement learning agents remember and reuse experiences from the past. In prior work, experience transitions were uniformly sampled from a replay memory. However, this approach simply replays transitions at the same frequency that they were originally experienced, regardless of their significance. In this paper we develop a framework for prioritizing experience, so as to replay important transitions more frequently, and therefore learn more efficiently. We use prioritized experience replay in Deep Q-Networks (DQN), a reinforcement learning algorithm that achieved human-level performance across many Atari games. DQN with prioritized experience replay achieves a new state-of-the-art, outperforming DQN with uniform replay on 41 out of 49 games.
Date of publication 2015
Code Programming Language Multiple
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